Search results for "Operation"

showing 10 items of 2969 documents

Solutions for districting problems with chance-constrained balancing requirements

2021

Abstract In this paper, a districting problem with stochastic demands is investigated. The goal is to divide a geographic area into p contiguous districts such that, with some given probability, the districts are balanced with respect to some given lower and upper thresholds. The problem is cast as a p -median problem with contiguity constraints that is further enhanced with chance-constrained balancing requirements. The total assignment cost of the territorial units to the representatives of the corresponding districts is used as a surrogate compactness measure to be optimized. Due to the tantalizing purpose of deriving a deterministic equivalent for the problem, a two-phase heuristic is d…

Mathematical optimizationInformation Systems and ManagementHeuristic (computer science)Computer scienceStrategy and Management0211 other engineering and technologiesStochastic programmingHeuristic02 engineering and technologyManagement Science and Operations ResearchPoisson distributionMeasure (mathematics)Contiguity (probability theory)Set (abstract data type)Contiguitysymbols.namesake0502 economics and business050210 logistics & transportation021103 operations research05 social sciencesStochastic programmingsymbolsProbability distributionDistrictingHeuristicsStochastic demandOmega
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NAUTILUS method: An interactive technique in multiobjective optimization based on the nadir point

2010

Most interactive methods developed for solving multiobjective optimization problems sequentially generate Pareto optimal or nondominated vectors and the decision maker must always allow impairment in at least one objective function to get a new solution. The NAUTILUS method proposed is based on the assumptions that past experiences affect decision makers’ hopes and that people do not react symmetrically to gains and losses. Therefore, some decision makers may prefer to start from the worst possible objective values and to improve every objective step by step according to their preferences. In NAUTILUS, starting from the nadir point, a solution is obtained at each iteration which dominates t…

Mathematical optimizationInformation Systems and ManagementInteractive programmingGeneral Computer Sciencebiologymedia_common.quotation_subjectManagement Science and Operations Researchbiology.organism_classificationMulti-objective optimizationIndustrial and Manufacturing EngineeringSightNegotiationIterated functionModeling and SimulationMinificationNautilusOptimal decisionMathematicsmedia_commonEuropean Journal of Operational Research
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Multi-start methods for combinatorial optimization

2013

Abstract Multi-start methods strategically sample the solution space of an optimization problem. The most successful of these methods have two phases that are alternated for a certain number of global iterations. The first phase generates a solution and the second seeks to improve the outcome. Each global iteration produces a solution that is typically a local optimum, and the best overall solution is the output of the algorithm. The interaction between the two phases creates a balance between search diversification (structural variation) and search intensification (improvement), to yield an effective means for generating high-quality solutions. This survey briefly sketches historical devel…

Mathematical optimizationInformation Systems and ManagementOptimization problemGeneral Computer ScienceComputer scienceGRASPSample (statistics)Management Science and Operations ResearchIndustrial and Manufacturing EngineeringOutcome (probability)Field (computer science)Local optimumModeling and SimulationCombinatorial optimizationMetaheuristicEuropean Journal of Operational Research
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On the numerical treatment of linearly constrained semi-infinite optimization problems

2000

Abstract We consider the application of two primal algorithms to solve linear semi-infinite programming problems depending on a real parameter. Combining a simplex-type strategy with a feasible-direction scheme we obtain a descent algorithm which enables us to manage the degeneracy of the extreme points efficiently. The second algorithm runs a feasible-direction method first and then switches to the purification procedure. The linear programming subproblems that yield the search direction involve only a small subset of the constraints. These subsets are updated at each iteration using a multi-local optimization algorithm. Numerical test examples, taken from the literature in order to compar…

Mathematical optimizationInformation Systems and ManagementOptimization problemGeneral Computer ScienceLinear programmingSemi-infiniteManagement Science and Operations ResearchIndustrial and Manufacturing EngineeringStochastic programmingLinear-fractional programmingModeling and SimulationCriss-cross algorithmExtreme pointDegeneracy (mathematics)MathematicsEuropean Journal of Operational Research
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Pre-processing techniques for resource allocation in the heterogeneous case

1998

The Heterogeneous Resource Allocation Problem (HRAP) deals with the allocation of resources, whose units do not all share the same characteristics, to an established plan of activities. Each activity requires one or more units of each resource which possess particular characteristics, and the objective is to find the minimum number of resource units of each type, necessary to carry out all the activities within the plan, in such a way that two activities whose processing overlaps in time do not have the same resource unit assigned. The HRAP is an NP-Complete problem and it is possible to optimally solve medium-sized HRAP instances in a reasonable time. The objective of this work is to devel…

Mathematical optimizationInformation Systems and ManagementResource (project management)General Computer ScienceComputer scienceModeling and SimulationResource allocationManagement Science and Operations ResearchIndustrial and Manufacturing EngineeringEuropean Journal of Operational Research
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DEA-like Models for the Efficiency Evaluation of Hierarchically Structured Units

2004

Abstract The knowledge of the internal structure of decision making units (DMUs) gives further insights with respect to the “black box” perspective when considering data envelopment analysis models. We present one-level and two-level hierarchical structures of the DMUs under evaluation. Each unit is composed of consecutive stages of parallel subunits all with constant returns to scale. In particular, the maximization of the relative efficiency of a DMU is studied. For the two-stage situation, different degrees of coordination among the subunits of the hierarchical levels are discussed. When some form of coordination has to be guaranteed, we introduce balancing constraints and we compare two…

Mathematical optimizationInformation Systems and ManagementReturns to scaleGeneral Computer ScienceHierarchy (mathematics)Data envelopment analysis; Efficiency evaluation; Hierarchy; Structured unitsStructure (category theory)DATA ENVELOPMENT ANALYSISMaximizationManagement Science and Operations ResearchIndustrial and Manufacturing EngineeringEfficiency evaluationPerspective (geometry)EfficiencyHierarchyModeling and SimulationBlack boxData envelopment analysisDATA ENVELOPMENT ANALYSIS; Network DEA; Efficiency evaluationNetwork DEAMathematicsStructured units
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Path relinking and GRG for artificial neural networks

2006

Artificial neural networks (ANN) have been widely used for both classification and prediction. This paper is focused on the prediction problem in which an unknown function is approximated. ANNs can be viewed as models of real systems, built by tuning parameters known as weights. In training the net, the problem is to find the weights that optimize its performance (i.e., to minimize the error over the training set). Although the most popular method for training these networks is back propagation, other optimization methods such as tabu search or scatter search have been successfully applied to solve this problem. In this paper we propose a path relinking implementation to solve the neural ne…

Mathematical optimizationInformation Systems and ManagementTraining setGeneral Computer ScienceArtificial neural networkComputer sciencebusiness.industryManagement Science and Operations ResearchSolverIndustrial and Manufacturing EngineeringBackpropagationEvolutionary computationTabu searchNonlinear programmingSearch algorithmModeling and SimulationArtificial intelligencebusinessMetaheuristicEuropean Journal of Operational Research
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Interactive Nonconvex Pareto Navigator for Multiobjective Optimization

2019

Abstract We introduce a new interactive multiobjective optimization method operating in the objective space called Nonconvex Pareto Navigator . It extends the Pareto Navigator method for nonconvex problems. An approximation of the Pareto optimal front in the objective space is first generated with the PAINT method using a relatively small set of Pareto optimal outcomes that is assumed to be given or computed prior to the interaction with the decision maker. The decision maker can then navigate on the approximation and direct the search for interesting regions in the objective space. In this way, the decision maker can conveniently learn about the interdependencies between the conflicting ob…

Mathematical optimizationInformation Systems and Managementinteractive multiobjective optimizationGeneral Computer ScienceComputer science0211 other engineering and technologies02 engineering and technologyManagement Science and Operations ResearchSpace (commercial competition)Multi-objective optimizationIndustrial and Manufacturing Engineering0502 economics and businessnonconvex problemsnavigationta113050210 logistics & transportation021103 operations researchpareto-tehokkuuspareto optimality05 social sciencesPareto principlemonitavoiteoptimointinavigointiModeling and Simulationmultiple objective programmingEuropean Journal of Operational Research
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The distributed assembly permutation flowshop scheduling problem

2013

Nowadays, improving the management of complex supply chains is a key to become competitive in the twenty-first century global market. Supply chains are composed of multi-plant facilities that must be coordinated and synchronised to cut waste and lead times. This paper proposes a Distributed Assembly Permutation Flowshop Scheduling Problem (DAPFSP) with two stages to model and study complex supply chains. This problem is a generalisation of the Distributed Permutation Flowshop Scheduling Problem (DPFSP). The first stage of the DAPFSP is composed of f identical production factories. Each one is a flowshop that produces jobs to be assembled into final products in a second assembly stage. The o…

Mathematical optimizationJob shop schedulingStrategy and ManagementSupply chainESTADISTICA E INVESTIGACION OPERATIVANeighbourhood (graph theory)Management Science and Operations ResearchIndustrial and Manufacturing EngineeringDistributed assembly flowshopVariable neighborhood descentVariable (computer science)PermutationConstructive algorithmsKey (cryptography)ORGANIZACION DE EMPRESASProduction (computer science)Mathematics
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Solving a class of fuzzy linear programs by using semi-infinite programming techniques

2004

This paper deals with a class of Fuzzy Linear Programming problems characterized by the fact that the coefficients in the constraints are modeled as LR-fuzzy numbers with different shapes. Solving such problems is usually more complicated than finding a solution when all the fuzzy coefficients have the same shape. We propose a primal semi-infinite algorithm as a valuable tool for solving this class of Fuzzy Linear programs and, we illustrate it by means of several examples.

Mathematical optimizationLinear programmingMathematics::General MathematicsArtificial IntelligenceLogicFuzzy setFuzzy numberFuzzy set operationsFuzzy control systemDefuzzificationFuzzy logicSemi-infinite programmingMathematicsFuzzy Sets and Systems
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